This paper pursues a course of investigation of an approach to combine Evolutionary Computation and Data Mining for the location and computation of multiple local and global optima of an objective function. To accomplish this task we exploit the spatial concentration of the population members around the optima of the objective function. Such concentration regions are determined by applying clustering algorithms on the actual positions of the members of the population. Subsequently, the evolutionary search is confined in the interior of the regions discovered. To enable the simultaneous discovery of more than one global and local optima, we propose the use of clustering algorithms that also provide intuitive approximations for the number of ...
Abstract- Evolutionary clustering is a recent trend in cluster analysis, that has the potential to y...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
To solve dynamic optimization problems, multiple population methods are used to enhance the populati...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...
Abstract. We propose a new niching method for Evolutionary Algo-rithms which is able to identify and...
Present paper introduces a new evolutionary technique for multimodal real-valued optimization which ...
Summary. Solving multimodal optimization tasks (problems with multiple glo-bal/local optimal solutio...
This paper approaches a recent hybrid evolutionary algorithm, called Evolutionary Clustering Search ...
2015 7th International Conference of Soft Computing and Pattern Recognition (SoCPaR) : 13 Nov-15 Nov...
Abstract. A challenge in hybrid evolutionary algorithms is to employ efficient strategies to cover a...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
This paper presents a hybrid evolutionary algorithm (EA) to solve nonlinear-regression problems. Alt...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
This paper discusses a selection scheme allowing to employ a clustering technique to guide the searc...
peer reviewedThis article presents single and multiobjective evolutionary approaches for solving the...
Abstract- Evolutionary clustering is a recent trend in cluster analysis, that has the potential to y...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
To solve dynamic optimization problems, multiple population methods are used to enhance the populati...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...
Abstract. We propose a new niching method for Evolutionary Algo-rithms which is able to identify and...
Present paper introduces a new evolutionary technique for multimodal real-valued optimization which ...
Summary. Solving multimodal optimization tasks (problems with multiple glo-bal/local optimal solutio...
This paper approaches a recent hybrid evolutionary algorithm, called Evolutionary Clustering Search ...
2015 7th International Conference of Soft Computing and Pattern Recognition (SoCPaR) : 13 Nov-15 Nov...
Abstract. A challenge in hybrid evolutionary algorithms is to employ efficient strategies to cover a...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
This paper presents a hybrid evolutionary algorithm (EA) to solve nonlinear-regression problems. Alt...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
This paper discusses a selection scheme allowing to employ a clustering technique to guide the searc...
peer reviewedThis article presents single and multiobjective evolutionary approaches for solving the...
Abstract- Evolutionary clustering is a recent trend in cluster analysis, that has the potential to y...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
To solve dynamic optimization problems, multiple population methods are used to enhance the populati...